Lanyun Zhu;Tianrun Chen;Deyi Ji;Jieping Ye;Jun Liu
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摘要

本文提出了一种新的高效的基于视频的人物再识别(ReID)即插即用骨干网。传统的基于视频的ReID方法通常使用CNN或transformer主干来提取每个采样视频帧中每个位置的深度特征。在这里,我们认为这种详尽的特征提取可能是不必要的,因为我们发现ReID视频中的不同帧通常表现出很小的差异,并且由于人类相对轻微的运动而包含许多相似的区域。受此启发,本文探索了一种更有选择性、更有效的范式。具体来说,我们引入了一种补丁选择机制,通过只选择关键的和不重复的补丁进行特征提取来降低计算成本。此外,我们提出了一种新的网络结构,它生成并利用伪框架全局上下文来解决稀疏输入导致的不完整视图的问题。通过整合这些新设计,我们的主干可以实现高性能和低计算成本。在多个数据集上进行的大量实验表明,我们的方法与ViT-B相比,计算成本降低了74%,与ResNet50相比降低了28%,而准确率与ViT-B相当,并且明显优于ResNet50。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Not Every Patch is Needed: Toward a More Efficient and Effective Backbone for Video-Based Person Re-Identification
This paper proposes a new effective and efficient plug-and-play backbone for video-based person re-identification (ReID). Conventional video-based ReID methods typically use CNN or transformer backbones to extract deep features for every position in every sampled video frame. Here, we argue that this exhaustive feature extraction could be unnecessary, since we find that different frames in a ReID video often exhibit small differences and contain many similar regions due to the relatively slight movements of human beings. Inspired by this, a more selective, efficient paradigm is explored in this paper. Specifically, we introduce a patch selection mechanism to reduce computational cost by choosing only the crucial and non-repetitive patches for feature extraction. Additionally, we present a novel network structure that generates and utilizes pseudo frame global context to address the issue of incomplete views resulting from sparse inputs. By incorporating these new designs, our backbone can achieve both high performance and low computational cost. Extensive experiments on multiple datasets show that our approach reduces the computational cost by 74% compared to ViT-B and 28% compared to ResNet50, while the accuracy is on par with ViT-B and outperforms ResNet50 significantly.
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